CN116260161B - Wind farm primary frequency modulation and inertia control method considering wind speed space-time difference - Google Patents

Wind farm primary frequency modulation and inertia control method considering wind speed space-time difference Download PDF

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CN116260161B
CN116260161B CN202310545307.9A CN202310545307A CN116260161B CN 116260161 B CN116260161 B CN 116260161B CN 202310545307 A CN202310545307 A CN 202310545307A CN 116260161 B CN116260161 B CN 116260161B
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frequency modulation
wind
power
primary frequency
inertia control
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CN116260161A (en
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俞靖一
杨铎烔
马溪原
许一泽
曾博儒
葛俊
徐全
习伟
张子昊
王鹏宇
林振福
聂智杰
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Southern Power Grid Digital Grid Research Institute Co Ltd
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    • HELECTRICITY
    • H02GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
    • H02JCIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
    • H02J3/00Circuit arrangements for ac mains or ac distribution networks
    • H02J3/24Arrangements for preventing or reducing oscillations of power in networks
    • H02J3/241The oscillation concerning frequency
    • HELECTRICITY
    • H02GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
    • H02JCIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
    • H02J3/00Circuit arrangements for ac mains or ac distribution networks
    • H02J3/004Generation forecast, e.g. methods or systems for forecasting future energy generation
    • HELECTRICITY
    • H02GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
    • H02JCIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
    • H02J3/00Circuit arrangements for ac mains or ac distribution networks
    • H02J3/38Arrangements for parallely feeding a single network by two or more generators, converters or transformers
    • H02J3/46Controlling of the sharing of output between the generators, converters, or transformers
    • H02J3/48Controlling the sharing of the in-phase component
    • HELECTRICITY
    • H02GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
    • H02JCIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
    • H02J2300/00Systems for supplying or distributing electric power characterised by decentralized, dispersed, or local generation
    • H02J2300/20The dispersed energy generation being of renewable origin
    • H02J2300/28The renewable source being wind energy
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y02TECHNOLOGIES OR APPLICATIONS FOR MITIGATION OR ADAPTATION AGAINST CLIMATE CHANGE
    • Y02ATECHNOLOGIES FOR ADAPTATION TO CLIMATE CHANGE
    • Y02A30/00Adapting or protecting infrastructure or their operation

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  • Engineering & Computer Science (AREA)
  • Power Engineering (AREA)
  • Wind Motors (AREA)

Abstract

The invention discloses a wind power plant primary frequency modulation and inertia control method considering wind speed space-time difference, which comprises the steps of firstly, predicting the running average rotor rotation speed of a wind power plant unit on the basis of high-precision prediction of wind power plant power by considering the fluctuation and uncertainty of wind resources along with time; then, based on the predicted power and the power generation factor, dynamically adjusting primary frequency modulation parameters of the wind power plant according to a fuzzy control rule, and obtaining inertia control parameters at future time according to the average rotating speed; and finally, calculating the frequency modulation power of the wind turbine generator set which participates in primary frequency modulation and inertia control addition by considering the difference of wind resource distribution in the wind power plant caused by wake flow effect. The invention overcomes the uncertainty of wind resources in time and the difference in spatial distribution, and enables the wind power plant to participate in primary frequency modulation and inertia control more accurately and more effectively while fully playing the frequency modulation capability of the wind power plant.

Description

Wind farm primary frequency modulation and inertia control method considering wind speed space-time difference
Technical Field
The invention belongs to the technical field of new energy power generation, and particularly relates to a wind farm primary frequency modulation and inertia control method considering wind speed space-time difference.
Background
The traditional power system uses a synchronous machine to provide system damping and transient support, and the new energy plant station is mainly self-protecting, but when a large amount of new energy is connected into a main power supply, the new energy must provide active support capacity for the system. The currently available frequency active supporting way of the wind turbine generator has primary frequency modulation and inertia control, but wind power resources have larger fluctuation and uncertainty in time, so that the primary frequency modulation and inertia control effect of the wind turbine generator is not ideal, meanwhile, due to the existence of wake effects in the wind turbine generator, the wind speed of a downstream wind turbine generator can be influenced by an upstream wind turbine generator, so that the running states of all wind turbine generator in the wind turbine generator are different, and the rotation speed and frequency modulation capability of a rotor are obviously different.
Under the condition of considering the space-time characteristics of wind speed, realizing the frequency modulation control of a wind power plant is an urgent problem faced by constructing a novel power system taking new energy as a main body, in the existing research, mainly adopting a load shedding reserve and an installation energy storage to solve the problem, but the load shedding reserve influences the reliability of reserve capacity due to the fluctuation of wind speed, and can lose a considerable part of wind energy, has poor economy, and requires larger investment cost when the energy storage is installed, the Chinese patent with publication number of CN112636374A relates to a primary frequency modulation and virtual inertia response control strategy and device for the wind power plant, participates in primary frequency modulation and virtual inertia response of a power grid by controlling the charge and discharge of a centralized wind wheel energy storage array system in the wind power plant, reforms the wind power plant, installs the energy storage system with larger investment, and does not consider the space-time distribution difference problem of wind speed; the Chinese patent with publication number of CN114566981A relates to a wind farm primary frequency modulation control strategy based on data prediction, and on the basis of establishing a uniformly distributed wind direction monitoring device for predicting wind speed and wind turbine power, the wind farm is primary frequency modulation controlled by combining improved DEH and CSS, and the gravity center falls on the prediction of wind power; patent number CN108361590A shows a scheduling control strategy of a wind power plant based on space-time scale, the wind power plant is divided into a plurality of areas, parameters such as wind speed, wind direction and the like of each area are monitored and predicted in real time, and multi-scale scheduling control is carried out according to wind speed characteristics and unit response characteristics of different positions in the wind power plant.
Disclosure of Invention
The invention aims to solve the problems that the frequency modulation capacity of a wind power plant is not matched with actual frequency modulation caused by the uncertainty of wind resources in time and the difference in spatial distribution, and the frequency modulation capacity of the wind power plant cannot be effectively exerted, and provides a wind power plant primary frequency modulation and inertia control method considering the space-time difference of wind speed.
A wind farm primary frequency modulation and inertia control method considering wind speed space-time difference mainly comprises the following steps:
step 1: taking the fluctuation and uncertainty of wind speed along with time into consideration, on the basis of high-precision prediction of wind power plant power, predicting the average rotor rotation speed of each period of the wind power plant, continuously updating, and combining a wind power plant power generation plan to obtain a power generation factor of the wind power plant;
step 2: according to the power prediction data and the power generation factor, adopting a fuzzy controller to roll and adjust the primary frequency modulation parameters of the wind power plant in the prediction period, and then calculating the primary frequency modulation parameters of each moment in two periods according to the primary frequency modulation parameters of the adjacent periods;
step 3: calculating inertia control parameters of a predicted period based on the predicted average rotor speed of the wind power plant and the equivalent inertia time constant of the wind power plant, and calculating the inertia control parameters of each moment in two periods according to the sizes of the inertia control parameters of adjacent periods;
step 4: and determining whether the wind power station participates in frequency modulation according to the frequency change of the power system, and calculating additional frequency modulation power of the unit in the station according to the primary frequency modulation parameter, the inertia control parameter, the running rotor rotating speed of the unit and the frequency change condition.
Specifically, the power prediction of the wind power plant can be based on the capability of the existing power prediction technology, the power of the wind power plant is predicted with high precision through field actual measurement data, digital weather forecast data, laser wind-finding radars and the like, and the predicted power of a future period is updated continuously in a certain prediction time domain.
Further, the average rotor speed of each period of the wind power plant is predicted based on the predicted power, and the average rotor speed is obtained by a predicted power of the wind power plant and a maximum power tracking curve model of the wind power units in the plant, namely, under specific power, the wind power units have an optimal running speed, and the rotor speeds of the units running in a constant speed area and a constant power area are rated speeds.
The primary frequency modulation and inertia control parameters of the wind power plant in the future period mainly comprise predicted power and average rotor rotating speed, and the resolution and rolling updating time scale are consistent with the power prediction.
The power generation factor in step 1 is obtained from the power generation plan data of the predicted power and the wind farm, the power generation plan is generally issued by the dispatching mechanism, and when the power generation plan is greater than or equal to the predicted power, that is, the wind farm is required to operate in the maximum power tracking state, the power generation plan is takenWhen the power generation schedule is smaller than the predicted power, the power generation factor is obtained by the difference between the two, and can be expressed as:
in the method, in the process of the invention,for generating factor, ++>For period->Predicted power of +.>For period->Is provided with a planned generated power which is equal to the planned generated power,is rated power.
Further, primary frequency modulation parameters are obtained by the predicted power and the power generation factor through a fuzzy controller, and the input quantity of the fuzzy controller is the predicted powerAnd power generation factor->Wherein the input is->To normalize according to its rated capacity, the fuzzy universe is in the range of 0-1]。
The output quantity is primary frequency modulation parameterThe main principle of the adjustment is as follows: />Along with->Increase and decrease with ∈>Is increased by an increase in (a).
Meanwhile, the inertia control parameters are obtained by the predicted average rotor speed and the wind farm inertia time constant, and the inertia control parameters are in direct proportion to the average rotor speed and the wind farm inertia time constant and can be expressed as follows;wherein->For period->Predicted average rotor speed of wind farm, +.>For period->Inertia control parameter, +.>Is the equivalent inertial time constant of the wind farm, +.>For rated rotation speed +.>The conversion coefficient for inertial control can be adjusted according to the actual requirements of grid connection and wind farm operation.
Further, according to the size of the adjacent time period parameter, the parameter of each moment is calculated.
Specifically, according to the primary frequency modulation parameter of the adjacent time periods, the primary frequency modulation parameter of each moment is calculated, and two adjacent time periods are assumed to beAnd->Then->And->The calculation formula of the primary frequency modulation parameter is as follows:
in the method, in the process of the invention,for time->Primary frequency modulation parameter->Representation period->Is at the midpoint of->Representation period->Is at the midpoint of->、/>Respectively indicate->And->Primary frequency modulation parameter of time period->Time intervals for each period.
According to the magnitude of the inertia control parameters of adjacent time periods, calculating the inertia control parameters of each moment, wherein the calculation formula is as follows:wherein->For time->Inertial control parameters->Respectively indicate->And->Inertial control parameters of the time period.
Further, when the frequency deviation exceeds a certain range, the wind power plant participates in primary frequency modulation and inertia control, additional frequency modulation power of the wind power set is calculated according to the parameter of the current moment, and the additional power of the wind power set participating in frequency modulation in the wind power plant can be expressed as:
in the method, in the process of the invention,unit->Additional power involved in primary frequency modulation and inertial control, < >>For time->Unit->Rotor speed of>、/>The maximum rotation speed and the minimum rotation speed are respectively, the maximum rotation speed is generally the rated rotation speed of the unit, and the minimum rotation speed is selected to avoid the stall and the stop of the unit to set the minimum operation rotation speed, +/->For the power system frequency>Then it is the power system frequency deviation.
The beneficial effects are that: according to the method, uncertainty and fluctuation of wind power generation in time are considered, based on high-precision power prediction, primary frequency modulation parameters and inertia control parameters at future time are dynamically updated by means of fuzzy control rules and rotor rotation speed prediction, so that the wind power plant can participate in primary frequency modulation and inertia control according to frequency modulation capacity of the wind power plant, the wind power plant is prevented from excessively participating in frequency modulation while frequency recovery of a power system is fully achieved, the running state difference of a machine set caused by wake effect of the wind power plant is further considered, the frequency modulation additional power of the machine set is obtained by introducing the variable of real-time rotation speed, the machine set with high frequency modulation capacity is enabled to have more output, and stall shutdown caused by excessive energy release of the machine set is avoided.
Drawings
FIG. 1 is a step diagram of the present invention.
Fig. 2 is a control block diagram of the method of the present invention.
FIG. 3 is a time scale diagram of an embodiment of the present invention.
FIG. 4 is a schematic diagram of variation of primary frequency modulation parameters and inertial control parameters according to an embodiment of the present invention.
Detailed Description
The invention is further described below by means of specific examples in connection with the drawings, which examples are given only for the purpose of illustration.
As shown in fig. 1, the invention discloses a wind farm primary frequency modulation and inertia control method considering wind power space-time difference, which comprises the following steps:
step 1: taking the fluctuation and uncertainty of wind speed along with time into consideration, on the basis of high-precision prediction of wind power plant power, predicting the average rotor rotation speed of each period of the wind power plant, continuously updating, and combining with a wind power plant power generation plan to obtain the power generation factor of the wind power plant. The method comprises the steps of considering uncertainty of wind power generation in time, obtaining average rotor rotating speed and power generation factors of a wind power plant based on a high-precision power prediction technology, and providing references for determining primary frequency modulation parameters and inertia control parameters in the following steps while evaluating frequency modulation capacity of the wind power plant.
Step 2: and rolling and adjusting the primary frequency modulation parameters of the wind power plant in the prediction period by adopting a fuzzy controller according to the power prediction data and the power generation factor, and calculating the primary frequency modulation parameters of each moment in the two periods according to the primary frequency modulation parameters of the adjacent periods. According to the method, primary frequency modulation parameters of each moment in a future prediction period can be obtained based on a fuzzy control rule, a wind power plant with high frequency modulation capability can play a larger frequency modulation role, the situation that a wind power unit stalls in a frequency modulation process in the wind power plant with low frequency modulation capability is avoided, and the primary frequency modulation parameters of each moment are calculated according to the parameter of an adjacent period so as to avoid damage to the unit.
Step 3: based on the predicted average rotor speed of the wind power plant and the equivalent inertia time constant of the wind power plant, calculating inertia control parameters of a predicted period, and calculating the inertia control parameters of each moment in two periods according to the sizes of the inertia control parameters of adjacent periods. According to the method, inertia control parameters are obtained according to the predicted average rotating speed, so that the rotating speed is higher than the wind power station to bear more inertia.
Step 4: and determining whether the wind power plant station participates in primary frequency modulation and inertia control according to the frequency change condition of the power system, and calculating additional frequency modulation power of the unit in the station according to the primary frequency modulation parameter, the inertia control parameter, the running rotor rotating speed of the unit and the frequency change condition. According to the method, the difference of the running states of the units caused by wake flow effects of the wind power plant is considered, the frequency modulation additional power of each wind power unit is calculated, and the variable of the real-time rotating speed is introduced, so that the additional power of the unit with high frequency modulation capability is higher, and stall and shutdown caused by excessive energy release of the unit can be avoided.
FIG. 2 shows a control block diagram of the method of the invention, wherein the high-precision power prediction of a wind power plant is based on the technical capability of the existing power prediction, the high-precision power prediction is obtained by combining power prediction models such as field actual measurement data, laser wind speed measurement radar, digital weather forecast data and the like, a power generation plan is issued by a power grid dispatching mechanism, and the average rotor rotating speed is obtained by the predicted power of the wind power plant and a mathematical model of a wind turbine.
Firstly, predicting the average rotor speed in the prediction time domain of a wind power plant, wherein the average rotor speed is obtained by a mathematical model of the prediction power of the wind power plant and the maximum power tracking curve of wind turbines in the plant, namely, under specific power, the wind turbines have an optimal running speed, and the rotor speeds of the turbines running in a constant speed zone and a constant power zone are rated speeds.
Further, the power generation factor is obtained from the power generation plan data of the predicted power and the wind farmWhen the power generation plan is greater than the predicted power, that is, the wind farm is required to operate in the maximum power tracking state, +.>When the power generation schedule is smaller than the predicted power, the power generation factor is obtained by the difference between the two, and can be expressed as:
wherein, the liquid crystal display device comprises a liquid crystal display device,、/>respectively is a period->Predicted power and planned generated power, +.>Is rated power.
Predicted power and power generation factor blurredThe controller can obtain the time periodPrimary frequency modulation parameter->That is to say that the input quantity of the fuzzy controller is predicted power +.>And power generation factor->Output is +.>The main principle of adjustment is as follows: />Along with->Increase and decrease with ∈>Is increased by an increase in (a).
Wherein the input quantityTo normalize according to its rated capacity, the fuzzy universe is in the range of 0-1]。
Further, in the fuzzy controller provided in this embodiment,contains 7 fuzzy subsets, namely VS (very small), MS (medium and small), S (small), M (medium), L (large), ML (medium and large), VL (very large), and->Also containing 6 fuzzy subsets of Z (zero), VS (very small), S (small), M (medium), L (large), VL (very large), the output also includes 7 fuzzy sets, namely VS (very small), MS (medium and small), S (small),M (medium), L (large), ML (medium large), VL (very large).
Preferably, the output isThe membership functions of (2) are shown in the following table:
in the above table,/indicates that the relevant condition does not exist.
The inertia control parameter in the step 3 is in direct proportion to the predicted average rotor speed and the inertia time constant of the wind power plant, and can be expressed as follows;wherein->For period->Inertial control parameters->For period->Predicted average rotor speed of wind farm, +.>Is the equivalent inertial time constant of the wind farm, +.>For rated rotation speed +.>And the conversion coefficient can be adjusted according to the actual running requirements of the grid connection and the wind farm.
As shown in fig. 3, assuming that the resolution of the wind farm power prediction is 1min, the predicted power of the future period is continuously updated based on the existing power prediction capability, the predicted time domain is 15min, the predicted power of the wind farm in the future 15min is corrected by rolling every 5min, and the average rotor rotation speed of the wind farm is predicted at the same time.
Further, the resolution of the primary frequency modulation and inertia control parameters and the time scale of the scroll update are consistent with the resolution of the power prediction.
FIG. 4 is a schematic diagram showing the variation of the primary frequency modulation parameter and the inertia control parameter according to the embodiment of the present invention, wherein the primary frequency modulation parameter at each moment is calculated according to the parameter values of the adjacent time periods, such as the time periodsAnd->The calculation formula of the primary frequency modulation parameter is as follows: />
In the method, in the process of the invention,for time->Primary frequency modulation parameter->,/>Respectively indicate time periods->、/>At midpoint time, & lt + & gt>Respectively indicate->And->Primary frequency modulation parameter of time period->The time interval of each period, which is consistent with the resolution of the primary frequency modulation parameter, is 1min in this embodiment.
Also, according to adjacent time periodsAnd->The inertia control parameter of each moment is calculated, and the calculation formula is as follows: />Wherein->For time->Inertial control parameters->、/>Respectively indicate->And->Inertial control parameters of the time period.
Further, when the frequency deviation exceeds a certain range, such as + -0.033 Hz, the wind power plant participates in primary frequency modulation and inertial control, and the wind power plant is connected withAccording to the obtainedAnd->The parameter size, the additional frequency modulation power of the wind turbine generator is calculated, and the additional power of the wind turbine generator participating in frequency modulation in the station can be expressed as: />
In the method, in the process of the invention,unit->Additional power involved in primary frequency modulation and inertial control, < >>For time->Unit->Rotor speed of>、/>The maximum rotation speed and the minimum rotation speed are respectively, the maximum rotation speed is generally the rated rotation speed of the unit, and the minimum rotation speed is selected to avoid the stall and the stop of the unit to set the minimum operation rotation speed, +/->For the power system frequency>Then it is the power system frequency deviation.
And the additional frequency modulation power is overlapped with the power generation power instruction of the current unit to be used as a total power reference value, and the wind turbine unit tracks the reference value and outputs active power.
The foregoing is illustrative of the preferred embodiments of the present invention, and it is not intended to limit the scope of the claims herein, but it should be noted that modifications and equivalents of the inventive arrangements can be made by those skilled in the art without departing from the scope of the invention.

Claims (8)

1. A wind farm primary frequency modulation and inertia control method considering wind speed space-time difference is characterized by comprising the following steps:
step 1: taking the fluctuation and uncertainty of wind speed along with time into consideration, on the basis of high-precision prediction of wind power plant power, predicting the average rotor rotation speed of each period of the wind power plant, continuously updating, and combining a wind power plant power generation plan to obtain a power generation factor of the wind power plant;
step 2: according to the power prediction data and the power generation factor, adopting a fuzzy controller to roll and adjust the primary frequency modulation parameters of the wind power plant in the prediction period, and then calculating the primary frequency modulation parameters of each moment in two periods according to the primary frequency modulation parameters of the adjacent periods;
step 3: calculating inertia control parameters of a predicted period based on the predicted average rotor speed of the wind power plant and the equivalent inertia time constant of the wind power plant, and calculating the inertia control parameters of each moment in two periods according to the sizes of the inertia control parameters of adjacent periods;
step 4: determining whether the wind power station participates in frequency modulation according to the frequency change of the power system, and calculating additional frequency modulation power of a unit in the station according to the obtained primary frequency modulation parameter, inertia control parameter, running rotor rotating speed of the unit and the frequency change condition;
the power generation factor is obtained from power generation plan data of the predicted power and the wind farm, and when the power generation plan is greater than or equal to the predicted power, the wind farm needs to operate in a maximum power tracking state to obtainWhen the power generation schedule is smaller than the predicted power, the power generation factor is obtained by the difference between the two factors, and can be expressed as:
in the method, in the process of the invention,for generating factor, ++>、/>Respectively is a period->Is>Is rated power.
2. The wind farm primary frequency modulation and inertia control method considering wind speed space-time difference according to claim 1, wherein the resolution of wind farm power prediction is at a minimum of minutes, the wind farm primary frequency modulation and inertia control parameters in a wind farm in a future period are predicted and updated in a rolling mode based on the capability of the existing power prediction technology through field actual measurement, laser radar wind measurement and digital weather forecast, and the resolution of the primary frequency modulation and inertia control parameters and the time scale of rolling update are consistent with the power prediction.
3. The method for primary frequency modulation and inertia control of wind farm according to claim 1, wherein the primary frequency modulation parameters in step 2 are obtained by using a fuzzy controller with predicted power and power generation factor, and the input of the fuzzy controller is predictedPower ofAnd power generation factor->The output is primary frequency modulation parameter->The main principle of fuzzy control is as follows: />Along with->Increase and decrease with ∈>Is increased by an increase in (a).
4. The method for primary frequency modulation and inertia control of a wind farm according to claim 1, wherein the average rotor speed in step 1 is obtained from a predicted power of the wind farm and a maximum power tracking curve model of wind turbines in the farm.
5. The method for primary frequency modulation and inertia control of a wind farm according to claim 1, wherein the inertia control parameter in step 3 is proportional to the predicted average rotor speed and the equivalent inertia time constant of the wind farm, and is expressed as:wherein->For period->Inertial control parameters->Is the equivalent inertial time constant of the wind farm, +.>For rated rotation speed +.>For period->Predicted average rotor speed of wind farm, +.>Is a conversion coefficient for inertial control.
6. The method for primary frequency modulation and inertia control of a wind farm according to claim 5, wherein in step 2, the primary frequency modulation parameter of each moment is calculated according to the primary frequency modulation parameter of the adjacent time period, and the calculation formula is as follows:
in the method, in the process of the invention,and->Representing two adjacent time periods,/->For time->Primary frequency modulation parameter, < >>Representation period->Is at the midpoint of->Representation period->Is at the midpoint of->、/>Respectively indicate->And->Primary frequency modulation parameter of time period->For a time interval of each period.
7. The wind farm primary frequency modulation and inertia control method considering wind speed space-time difference according to claim 6, wherein in the step 3, according to the magnitude of the inertia control parameter of the adjacent time period, the inertia control parameter of each moment is calculated, and the calculation formula is as follows:
in the method, in the process of the invention,for time->Inertial control parameters->、/>Respectively indicate->And->Inertial control parameters of the time period.
8. The method for primary frequency modulation and inertia control of a wind farm according to claim 7, wherein in step 4, when the frequency deviation exceeds a certain range, the wind farm participates in primary frequency modulation and inertia control, and the additional power of the wind turbine participating in frequency modulation in the farm can be expressed as:
in the method, in the process of the invention,for the unit->Additional power involved in primary frequency modulation and inertial control, < >>For time->Unit->Rotor speed of>、/>Maximum and minimum rotational speeds, respectively, +.>For the power system frequency>Then it is the power system frequency deviation.
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CN109494769A (en) * 2019-01-07 2019-03-19 华北电力大学 A kind of wind field participates in frequency modulation method and system
CN113489073A (en) * 2021-07-21 2021-10-08 湖南城市学院 Multi-time-space layered comprehensive frequency modulation control system based on fan cluster
CN113708406A (en) * 2021-08-23 2021-11-26 国网湖南省电力有限公司 Inertia control method and processor for distributed energy storage type wind power plant

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Publication number Priority date Publication date Assignee Title
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Patent Citations (4)

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CN106532746A (en) * 2016-12-27 2017-03-22 北京四方继保自动化股份有限公司 Control system for participation of wind power plant in primary frequency modulation and implementation method
CN109494769A (en) * 2019-01-07 2019-03-19 华北电力大学 A kind of wind field participates in frequency modulation method and system
CN113489073A (en) * 2021-07-21 2021-10-08 湖南城市学院 Multi-time-space layered comprehensive frequency modulation control system based on fan cluster
CN113708406A (en) * 2021-08-23 2021-11-26 国网湖南省电力有限公司 Inertia control method and processor for distributed energy storage type wind power plant

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